In this paper a method is developed and implemented to provide the simulated maximum likelihood estimation of latent diffusions based on discrete data. The method is applicable to diffusions that either have latent elements in the state vector or are only observed at discrete time with a noise. Latent diffusions are very important in practical applications in financial economics. The proposed approach synthesizes the closed form method of Aït-Sahalia (2008) and the efficient importance sampler of Richard and Zhang (2007). It does not require any infill observations to be introduced and hence is computationally tractable. The Monte Carlo study shows that the method works well in finite sample. The empirical applications illustrate usefulness...
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
Data available on continuos-time diffusions are always sampled discretely in time. In most cases, th...
With a view to likelihood inference for discretely observed diffusion type models, we propose a simp...
In this paper a method is developed and implemented to provide the simulated maximum likelihood esti...
This paper provides methods for carrying out likelihood based inference for diffusion driven models,...
The objective of the paper is to present a novel methodology for likelihood-based inference for disc...
This paper introduces a Monte Carlo method for maximum likelihood inference in the context of discre...
This paper is concerned with the Bayesian estimation of nonlinear stochastic differential equations ...
This paper is concerned with the Bayesian estimation of nonlinear stochastic differential equations ...
This paper develops a new econometric method to estimate continuous time processes from discretely s...
This paper provides a closed-form density approximation when the underlying state variable is a one-...
The objective of this paper is parametric inference for stochastic volatility models. We consider a ...
Data available on continuous-time diffusions are always sampled discretely in time. In most cases, t...
This article focuses on two methods to approximate the loglikelihood function for univariate diffusi...
In this paper a new method is proposed for estimation of parameters in diffusion processes from disc...
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
Data available on continuos-time diffusions are always sampled discretely in time. In most cases, th...
With a view to likelihood inference for discretely observed diffusion type models, we propose a simp...
In this paper a method is developed and implemented to provide the simulated maximum likelihood esti...
This paper provides methods for carrying out likelihood based inference for diffusion driven models,...
The objective of the paper is to present a novel methodology for likelihood-based inference for disc...
This paper introduces a Monte Carlo method for maximum likelihood inference in the context of discre...
This paper is concerned with the Bayesian estimation of nonlinear stochastic differential equations ...
This paper is concerned with the Bayesian estimation of nonlinear stochastic differential equations ...
This paper develops a new econometric method to estimate continuous time processes from discretely s...
This paper provides a closed-form density approximation when the underlying state variable is a one-...
The objective of this paper is parametric inference for stochastic volatility models. We consider a ...
Data available on continuous-time diffusions are always sampled discretely in time. In most cases, t...
This article focuses on two methods to approximate the loglikelihood function for univariate diffusi...
In this paper a new method is proposed for estimation of parameters in diffusion processes from disc...
Stochastic differential equations often provide a convenient way to describe the dynamics of economi...
Data available on continuos-time diffusions are always sampled discretely in time. In most cases, th...
With a view to likelihood inference for discretely observed diffusion type models, we propose a simp...